Gijsberts Arjan, Caputo Barbara
IEEE Int Conf Rehabil Robot. 2013 Jun;2013:6650476. doi: 10.1109/ICORR.2013.6650476.
Recent studies have explored the integration of additional input modalities to improve myoelectric control of prostheses. Arm dynamics in particular are an interesting option, as these can be measured easily by means of accelerometers. In this work, the benefit of accelerometer signals is demonstrated on a large scale movement classification task, consisting of 40 hand and wrist movements obtained from 20 subjects. The results demonstrate that the accelerometer modality is indeed highly informative and even outperforms surface electromyography in terms of classification accuracy. The highest accuracy, however, is obtained when both modalities are integrated in a multi-modal classifier.
最近的研究探索了整合额外的输入模式以改善假肢的肌电控制。特别是手臂动力学是一个有趣的选择,因为这些可以通过加速度计轻松测量。在这项工作中,加速度计信号的优势在一项大规模运动分类任务中得到了证明,该任务包括从20名受试者获得的40种手部和腕部运动。结果表明,加速度计模式确实具有很高的信息量,并且在分类准确性方面甚至优于表面肌电图。然而,当两种模式集成到多模态分类器中时,可以获得最高的准确性。